Animal Identification with Independent Foreground and Background Modeling
Date issued
2025
Authors
Journal Title
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Volume Title
Publisher
Springer
Abstract
We propose a method that robustly exploits background andforeground in visual identification of individual animals. Experiments show that their automatic separation, made easy with methods like Segment Anything, together with independent foreground and backgroundrelated modeling, improves results. The two predictions are combined in a principled way, thanks to novel Per-Instance Temperature Scaling that helps the classifier to deal with appearance ambiguities in training and to produce calibrated outputs in the inference phase. For identity prediction from the background, we propose novel spatial and temporal models. On two problems, the relative error w.r.t. the baseline was reduced by 22.3% and 8.8%, respectively. For cases where objects appear in new locations, an example of background drift, accuracy doubles.
Description
Subject(s)
foreground and background, calibration, identification